US11398308B2 - Physiologic severity of illness score for acute care patients - Google Patents
Physiologic severity of illness score for acute care patients Download PDFInfo
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- US11398308B2 US11398308B2 US14/585,845 US201414585845A US11398308B2 US 11398308 B2 US11398308 B2 US 11398308B2 US 201414585845 A US201414585845 A US 201414585845A US 11398308 B2 US11398308 B2 US 11398308B2
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- G16H50/00—ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
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- G16H10/00—ICT specially adapted for the handling or processing of patient-related medical or healthcare data
- G16H10/60—ICT specially adapted for the handling or processing of patient-related medical or healthcare data for patient-specific data, e.g. for electronic patient records
Definitions
- predictive methodologies are used to quantify a patient's severity of illness (pSIS) and to estimate their in-facility mortality risk.
- pSIS severity of illness
- These predictive methodologies provide health care industry stakeholders with normalized metrics by comparing derived predictive score values with observed outcomes. For example, health care agencies and the general public may use predictive score data for inter-ICU performance comparisons while researchers may use predictive score data to evaluate experimental therapies.
- Acute Physiology and Chronic Health Evaluation (APACHE®) that is based on the view that the core mission of intensive care is to treat disease and maintain physiological homeostasis.
- a central metric of the APACHE® predictive methodology is the APACHE® score measuring a patient's SOI during the initial twenty-four hour period following the patient's admission to the ICU.
- the APACHE® score is a composite of three components including the Acute Physiology Score (APS), co-morbid conditions, and the effects of age. The three components are each weighted according to their relative impact on the patient's SOI.
- This logistic regression model involves 143 physiological variables, including those in the APS component, age, seven concomitant chronic conditions, the period of time between hospital and ICU admissions, 116 diagnostic categories, the admission source, and five additional clinical variables.
- a key component of the APACHE® score is the APS component that reflects the patient's response to treatment during the initial twenty-four hour period following their admission to the ICU.
- the worst recorded values for seventeen measured physiological variables within the initial twenty-four hour period following a patient's admission are used to determine weights. Each of these weights is assigned to the corresponding physiological variable, which are then summed to derive the APACHE®'s APS component. Consequently, an SOI score derived from the APS component can only worsen during that initial twenty-four hour period.
- a predictive methodology to derive predictive scores that tracks a patient's progress as the patient's condition improves or deteriorates over time is needed. Predictive scores from such predictive methodologies would be useful to gauge a patient's status throughout the day or may be used by health care providers as a signal in an early warning system.
- methods, systems, and computer storage media are performing a method in a clinical computing environment for determining a patient's severity of illness score (pSIS) for patients admitted to an acute care healthcare facility.
- Data corresponding to physiologic components is received from an electronic medical record associated with a patient admitted to an acute care healthcare facility. The data is not required to correspond to physiologic components collected in or associated with an intensive care unit. Weights are assigned to each physiologic component. The weights are derived based on a deviation from normal. A pSIS is for the patient is determined by summing the weights. Additional data corresponding to the physiologic components may be received from the electronic medical record. The additional data may be utilized to update the weights and determine an updated pSIS for the patient which may be utilized to track a progress of the patient.
- pSIS severity of illness score
- FIG. 1 is a block diagram of an exemplary computing environment suitable to implement embodiments of the present invention
- FIG. 2 is a block diagram of an exemplary clinical decision support rule generation and maintenance system, in accordance with embodiments of the present invention
- FIG. 3 is a flow diagram showing an exemplary method for determining a pSIS for a patient admitted to an acute care healthcare facility, in accordance with various embodiments of the present invention
- FIG. 4 is a flow diagram showing an exemplary method for determining an overall severity of illness score, using a pSIS as a component, in accordance with various embodiments of the present invention.
- FIG. 5 is a flow diagram showing an exemplary method for predicting an outcome for a patient admitted to an acute care healthcare facility using a pSIS as a variable in predictive equations, in accordance with various embodiments of the present invention.
- various aspects of the technology described herein are generally directed to methods, systems, computer storage media useful for determining a pSIS for a patient admitted to an acute care healthcare facility.
- Various embodiments of the present invention are directed to determining a pSIS for a patient by summing weights assigned to physiologic components.
- data associated with physiologic components are received from an electronic medical record associated with a patient.
- an electronic medical record associated with a patient includes data from all admissions to an acute care facility.
- the pSIS derived using such data could be used with a broader scope of patients admitted to the acute care facility, not just to an ICU.
- the received data includes data associated with a patient's vital sign measurements.
- weights are assigned to a minimum, median, and maximum measured value for each of the vital sign measurements.
- the weights associated vital sign measurements are derived based on a deviation from normal for minimum, median, and maximum measured values over a twenty-four hour time period following the patient's admission and subsequently updated as new values are recorded.
- the received data includes data associated with common laboratory tests on a blood sample taken from the patient.
- weights are assigned to a minimum and a maximum measured value for each of the common laboratory tests.
- the weights associated with common laboratory test measurements are derived based on a deviation from normal for minimum and maximum measured values over a twenty-four hour time period following the patient's admission and subsequently updated as new values are recorded.
- an exemplary computing environment suitable for use in implementing embodiments of the present invention is described below.
- an exemplary computing environment e.g., medical-information computing-system environment
- computing environment 100 is depicted and designated generally as computing environment 100 .
- Computing environment 100 is merely an example of one suitable computing environment and is not intended to suggest any limitation as to the scope of use or functionality of the invention. Neither should computing environment 100 be interpreted as having any dependency or requirement relating to any single component or combination of components illustrated therein.
- the present invention might be operational with numerous other purpose computing system environments or configurations.
- Examples of well-known computing systems, environments, and/or configurations that might be suitable for use with the present invention include personal computers, server computers, hand-held or laptop devices, multiprocessor systems, microprocessor-based systems, set top boxes, programmable consumer electronics, network PCs, minicomputers, mainframe computers, distributed computing environments that include any of the above-mentioned systems or devices, and the like.
- the present invention might be described in the general context of computer-executable instructions, such as program modules, being executed by a computer.
- Exemplary program modules comprise routines, programs, objects, components, and data structures that perform particular tasks or implement particular abstract data types.
- the present invention might be practiced in distributed computing environments where tasks are performed by remote processing devices that are linked through a communications network.
- program modules might be located in association with local and/or remote computer storage media (e.g., memory storage devices).
- computing environment 100 includes a computing device in the form of control server 102 .
- Exemplary components of control server 102 comprise a processing unit, internal system memory, and a suitable system bus for coupling various system components, including data store 104 , with control server 102 .
- the system bus might be any of several types of bus structures, including a memory bus or memory controller, a peripheral bus, and a local bus, using any of a variety of bus architectures.
- Exemplary architectures comprise Industry Standard Architecture (ISA) bus, Micro Channel Architecture (MCA) bus, Enhanced ISA (EISA) bus, Video Electronic Standards Association (VESA) local bus, and Peripheral Component Interconnect (PCI) bus, also known as Mezzanine bus.
- ISA Industry Standard Architecture
- MCA Micro Channel Architecture
- EISA Enhanced ISA
- VESA Video Electronic Standards Association
- PCI Peripheral Component Interconnect
- Control server 102 typically includes therein, or has access to, a variety of computer-readable media.
- Computer-readable media can be any available media that might be accessed by control server 102 , and includes volatile and nonvolatile media, as well as, removable and non-removable media.
- Computer-readable media may comprise computer storage media and communication media. Computer storage media does not comprise, and in fact explicitly excludes, signals per se.
- Computer storage media includes both volatile and nonvolatile, removable and non-removable media implemented in any method or technology for storage of information such as computer-readable instructions, data structures, program modules or other data.
- Computer storage media includes, but is not limited to, RAM, ROM, EEPROM, flash memory or other memory technology, CD-ROM, digital versatile disks (DVD) or other optical disk storage, magnetic cassettes, magnetic tape, magnetic disk storage or other magnetic storage devices, or any other medium which can be used to store the desired information and which can be accessed by control server 102 .
- Communication media typically embodies computer-readable instructions, data structures, program modules or other data in a modulated data signal such as a carrier wave or other transport mechanism and includes any information delivery media.
- modulated data signal means a signal that has one or more of its characteristics set or changed in such a manner as to encode information in the signal.
- communication media includes wired media such as a wired network or direct-wired connection, and wireless media such as acoustic, RF, infrared and other wireless media. Combinations of any of the above should also be included within the scope of computer-readable media.
- Control server 102 might operate in a computer network 106 using logical connections to one or more remote computers 108 .
- Remote computers 108 might be located at a variety of locations in a medical or research environment or at healthcare facilities, including clinical laboratories (e.g., molecular diagnostic laboratories), hospitals and other inpatient settings, veterinary environments, ambulatory settings, medical billing and financial offices, hospital administration settings, home healthcare environments, and clinicians' offices.
- Clinicians or healthcare providers may comprise a treating physician or physicians; specialists such as surgeons, radiologists, cardiologists, and oncologists; emergency medical technicians; physicians' assistants; nurse practitioners; health coaches; nurses; nurses' aides; pharmacists; dieticians; microbiologists; laboratory experts; laboratory technologists; genetic counselors; researchers; veterinarians; students; and the like.
- Remote computers 108 may also be physically located in nontraditional medical care environments so that the entire healthcare community might be capable of integration on the network.
- Remote computers 108 may include personal computers, servers, routers, network PCs, peer devices, other common network nodes, or the like and might comprise some or all of the elements described above in relation to control server 102 .
- the devices can be personal digital assistants or other like devices.
- Computer networks 106 comprise local area networks (LANs) and/or wide area networks (WANs). Such networking environments are commonplace in offices, enterprise-wide computer networks, intranets, and the Internet.
- the control server 102 When utilized in a WAN networking environment, the control server 102 might comprise a modem or other means for establishing communications over the WAN, such as the Internet.
- program modules or portions thereof might be stored in association with the control server 102 , the data store 104 , or any of the remote computers 108 .
- various application programs may reside on the memory associated with any one or more of the remote computers 108 .
- the network connections shown are exemplary and other means of establishing a communications link between the computers (e.g., control server 102 and remote computers 108 ) might be utilized.
- an organization, a healthcare provider, and/or a user at a healthcare facility might enter commands and information into the control server 102 or convey the commands and information to control server 102 via one or more remote computers 108 through input devices, such as a keyboard, a pointing device (commonly referred to as a mouse), a trackball, or a touch pad.
- input devices such as a keyboard, a pointing device (commonly referred to as a mouse), a trackball, or a touch pad.
- Other input devices comprise microphones, satellite dishes, scanners, or the like.
- Commands and information might also be sent directly from a remote healthcare device to control server 102 .
- control server 102 and/or remote computers 108 might comprise other peripheral output devices, such as speakers and a printer.
- control server 102 and remote computers 108 Although many other internal components of control server 102 and remote computers 108 are not shown, such components and their interconnection are well known. Accordingly, additional details concerning the internal construction of control server 102 and remote computers 108 are not further disclosed herein.
- FIG. 2 a block diagram is provided illustrating an exemplary system 200 in which a pSIS engine 210 is shown interfaced with medical information computing system 250 in accordance with an embodiment of the present invention.
- Medical information computing system 250 may be a comprehensive computing system within a clinical environment similar to the exemplary computing system 100 discussed above with reference to FIG. 1 .
- Medical information computing system 250 includes a clinical display device 252 .
- clinical display device 252 is configured to display a pSIS score as determined by pSIS engine 210 .
- clinical display device 252 is configured to receive input from the clinician, such as selection of a patient type, unit, facility information, or information associated with the patient, and the like.
- medical information computing system 250 receives inputs, such as information associated with a patient, from one or more medical devices 240 .
- pSIS engine 210 is configured to determine a pSIS for a patient admitted to an acute care facility. As shown in FIG. 2 , pSIS engine 210 includes, in various embodiments, receiving module 212 , weight module 214 , determining module 216 , additional data module 218 , update module 220 , and prediction module 222 .
- Receiving module 212 is configured to receive data corresponding to physiologic components from one or more electronic medical records associated with a patient admitted to an acute care facility.
- the data is associated with a patient's vital signs and common laboratory tests on a blood sample taken from the patient.
- Weight module 214 is configured to assign weights to each physiologic component or measure of interest. The weights are derived based on a deviation from normal of a minimum, a median, and/or a maximum measured value.
- a genetic algorithm (GA) methodology is utilized, in one embodiment, to assign cut-points that define intervals of each physiologic measurement and weights that are assigned to each interval defined for the physiologic measures of interest.
- Genetic algorithms are adaptive machine learning models that mimic aspects of biological evolution like the principles of natural selection, inheritance, and variation to potentially optimize solutions to a problem.
- the cut-point and weight for each component are assigned a random value. These randomly assigned values for each component's cut-point and weight represent an initial population of potential solutions to the problem. For example, the problem could be predicting a patient's mortality risk prior to being discharged from an acute care facility. The set of solutions from this initial population serve as inputs to the GA algorithm. Each component's cut-point and weight are evaluated based upon an objective standard known as a fitness function. In general, the fitness function is a metric specifically tailored for the problem. For example, the fitness function could be a metric of how accurate a particular set of solutions is at predicting a patient's mortality risk prior to being discharged from an acute care facility.
- the evaluation process begins by assigning fitness values to each member (i.e. cut-point and/or weight) of the initial population, which may serve as a basis for a selection process.
- members of the initial population with low fitness values may be eliminated.
- Members with high fitness values may be selected as “parents” that are used to produce a succeeding population of “children”.
- GA operators like mutation operators and crossover operators are applied to those selected parents to produce the succeeding population.
- GA operators serve to probabilistically introduce random variations into the succeeding population to prevent such things as a particular set of solutions converging towards local optima.
- This process cycle of evaluation, selection, and application of GA operators is repeated until some condition is satisfied. These conditions may include a particular population meets a threshold level of accuracy, a threshold number of cycle iterations have been performed, or any predetermined threshold established by a user. Once the condition is satisfied, this approach yields cut-points that define ranges for physiologic measurements of interest and weights that are assigned to each of those particular ranges. Therefore, when this cycle of evaluation, selection, and genetic operations is iterated for many several generations, the overall fitness of the population generally improves, on average. The resulting set of solutions in the final population represents improved “solutions” to the problem.
- seven physiologic measures of interest include four items related to vital sign information used by the APACHE® predictive methodology (Heart Rate (HR), Respiratory Rate (Resp), Temperature (Temp), and Mean Arterial Pressure (MAP)) as well as three items related to common laboratory tests on a blood sample from the patient (Platelet Count, Hematocrit, and Sodium).
- HR Heart Rate
- Resp Respiratory Rate
- Temp Temperature
- MAP Mean Arterial Pressure
- a pSIS includes four vital sign physiologic measures of interest, including the minimum and maximum measured values over a twenty-four hour time period.
- the pSIS utilizes each vital sign's median measured value over a time period, which might improve during that time frame.
- the time period may be twenty-four hours.
- the present invention utilizes a Platelet Count measurement that is not included by the APACHE® methodology. Platelet count imparts information on the body's ability to clot a wound. Too small a value implies inability to heal a wound, while too large a value indicates the possibility of a blood clot. Platelet count is considered an important laboratory test that should be included in a measure of physiologic derangement. The present invention excludes nine physiologic measures that were part of APACHE's APS, as these measures were found to be of little importance by the GA and/or infrequently measured.
- the four physiologic measures of interest available via vital sign measurements are utilized with the cut-points (in parenthesis) and weights (before parenthesis) as shown below in Table 1.
- the three physiologic measures of interest available via laboratory tests on a blood sample are utilized with the cut-points (in parenthesis) and weights (before parenthesis) as shown below in Table 2.
- Determining module 216 is configured to determine a pSIS for the patient by summing weights associated with each minimum and maximum value measured for each physiologic component or measure of interest (and also each median value measured for vital sign physiologic components) using data received by receiving module 212 during the preceding time period with weights assigned by weight module 214 .
- the preceding time period is the preceding twenty-four hours.
- the pSIS is determining by summing weights assigned to a minimum, a median, and a maximum measured vital sign value.
- weight module 214 assigns weights based on a deviation from normal for minimum, median, and maximum for each measured vital sign values over a time period following the patient's admission.
- the pSIS is determining by summing weights assigned to a minimum and a maximum measured value for each of the common laboratory tests.
- weight module 214 assigns weights based on minimum and maximum measured values for each of the common laboratory tests over the time period.
- a combination of the above assigned weights may be used to determine a pSIS. That is, the pSIS may be determined by a summation of both weights assigned to a minimum, a median, and a maximum for each measured vital sign value as well as a summation of weights assigned to a minimum and a maximum measured value for each of the common laboratory tests.
- a pSIS can be determined by determining module 216 for the general patient population within an acute care facility.
- a pSIS for this fictional patient determined by a summation of the weights, would be 95 [heart rate (9+8+9)+MAP (1+10+5)+body temperature (9+2+0)+respiratory rate (0+2+12)+platelet count (4+10)+hematocrit (5+0)+sodium level (9+0)].
- Additional data module 218 is configured to receive additional data corresponding to the physiologic components from the electronic medical record.
- the additional data may be based on changes associated with the patient that might affect the weight for a particular physiologic component and/or the pSIS.
- the additional data may be based on a clinician's desire to monitor a particular physiologic component or a follow-up measurement for that physiologic component.
- the additional data may be based on a follow-up visit or later admission (i.e., after the initial admission) to the acute care facility.
- Update module 220 is configured to update the weights and determine an updated pSIS for the patient. In one embodiment, update module 220 assigns updated weights to each physiologic component. In another embodiment, update module 220 may communicate the additional data corresponding to the physiologic components to weight module 214 so weight module 214 can assign updated weights to each physiologic component. In one embodiment, weight module 214 communicates the updated weights to determining module 216 to determine the updated pSIS. In another embodiment, update module 220 determines the updated pSIS.
- the pSIS can be utilized as a component of an overall severity of illness (SOI) score and/or a variable in predictive equations.
- predictive equations may comprise: demographics, other medical conditions diagnosed for a patient, comorbid conditions, additional procedures/medications performed on or in use by a patient, and the like.
- prediction module 222 may utilize the pSIS in a predictive equation to predict a likelihood of hospital mortality for the patient.
- prediction module 222 may utilize the pSIS in a predictive equation to predict a length of stay in the acute care facility for the patient.
- prediction module 222 may utilize the pSIS in a predictive equation to predict any of a plurality of outcomes for the patient including: duration of mechanical ventilation, location of stay (e.g. level of care), readmission risk, discharge destination, and the like.
- FIG. 3 a flow diagram is provided illustrating a method 300 for determining a pSIS for a patient admitted to an acute care healthcare facility, in accordance with various embodiments of the present invention.
- step 310 data corresponding to physiologic components is received from an electronic medical record associated with a patient admitted to an acute care healthcare facility.
- the data comprises information derived from the patient's vital sign measurements taken within an initial twenty-four period following admission.
- the information derived from the patient's vital sign measurements includes a minimum, a median, a maximum, and/or a range of recorded measurement values.
- the data comprises information derived from common laboratory tests performed on a blood sample taken from the patient.
- the information derived from common laboratory tests performed on the blood sample includes a minimum, a maximum, and/or a range of recorded measurement values.
- weights are assigned to each physiologic component.
- the weights are derived based on a deviation from normal.
- a GA methodology may be utilized, as discussed above with respect to FIG. 2 , to assign weights to each physiologic component.
- weights are assigned to a minimum, a median, and a maximum measured value for each vital sign physiologic component measured.
- weights associated with each vital sign measurement are derived based on a deviation from normal for minimum, median, and maximum measured values over a time period following the patient's admission.
- weights are assigned to a minimum and a maximum measured value for each common laboratory test measurement.
- weights associated with each common laboratory test derived based on a deviation from normal for minimum and maximum measured values over the time period following the patient's admission.
- a pSIS is determined for the patient by summing the derived weights.
- the pSIS can be utilized as a component of an overall severity of illness (SOI) score and/or a variable in predictive equations. Additional data corresponding to the physiologic components is received, at step 340 , from the electronic medical record. The additional data is utilized to update the weights and determine an updated pSIS for the patient at step 350 .
- SOI overall severity of illness
- a progress of the patient is tracked based on the updated pSIS that is updated whenever a new measurement is recorded, and assessed over the preceding time period.
- the preceding time period may be twenty-four hours.
- a patient's pSIS score may improve or worsen (e.g. decrease or increase) over a period of time.
- the period of time could be twenty-four hours.
- a clinician can compare the initial pSIS to subsequent updated pSIS's to determine whether a treatment is working or the patient is progressing appropriately.
- updated pSIS's may be used to trigger alerts for clinicians associated with the patient's physiology.
- updated pSIS's may be used to trigger emergency alerts/warnings about a patient's rapidly worsening physiology.
- FIG. 4 a flow diagram is provided illustrating a method 400 for determining an overall SOI score, using a pSIS as a component, for a patient admitted to an acute care healthcare facility, in accordance with various embodiments of the present invention.
- a pSIS may be utilized as a component of an overall SOI score for the patient.
- a pSIS and/or an updated pSIS is determined in accordance with method 300 .
- a comorbidity index (CI) score for the patient is received.
- the CI score accounts for effects that comorbidities have on a patient's physiology.
- the CI score for a patient may be determined by summing weights assigned to one or more comorbidity variables identified in an electronic medical record associated with the patient.
- a multiplier may be applied to the summation of weights assigned to the one or more identified comorbidity variables (e.g. summation of weights*8).
- CHI refers to one or more of the following comorbidities: acquired immune deficiency syndrome (AIDS), Cirrhosis, Leukemia, Lymphoma, and a prior tissue Transplant received by the patient.
- AIDS acquired immune deficiency syndrome
- Cirrhosis Cirrhosis
- Leukemia Leukemia
- Lymphoma a prior tissue Transplant received by the patient.
- the last three rows of Table 3 assign greater weights to provide for cumulative effects on a patient's physiology associated with the patient concurrently being subject to particular combinations of comorbidities.
- a support index (SI) score for the patient is received and/or determined.
- SI support index
- the SI score accounts for effects that certain medications and/or medical procedures administered to a patient (e.g. within the initial twenty-four hours from admission) have on the patient's physiology.
- the SI score for a patient is determined by summing weights assigned to one or more support variables identified in an electronic medical record associated with the patient. Additionally, in some embodiments, a multiplier may be applied to the summation of weights assigned to the one or more identified support variables (e.g. summation of weights*10).
- the one or more support variables and associated weights for each that are used to determine the SI score are shown in Table 4 below. As shown by Table 4, administering some medications and/or medical procedures may result in a negative weight being assigned. This accounts for evidence that these medications and/or medical procedures correspond with a reduced mortality risk.
- five support variables used to determine the SI score may be based on medications and five support variables may be based on medical procedures. In other embodiments, different combinations of medication support variables and medical procedure support variables may be used.
- a patient prior to being admitted to a health care facility, a patient previously had a pacemaker inserted. Also, during an initial twenty-four hour period following admission, the patient is placed on Bilevel Positive Airway Pressure (BiPap) and receives intravenous (IV) insulin.
- BiPap Bilevel Positive Airway Pressure
- IV intravenous
- An SI score for the patient of this example may be determined as follows: ⁇ 3.1 weight for the pacemaker+3.2 weight for the BiPap+1.7 weight for the insulin given IV, for a combined score of 1.8. If a multiplier of 10 is used, the SI score for this patient would be 18.0. In some embodiments a different multiplier may be used.
- an overall SOI score is determined for the patient by summing the derived pSIS and one or more of the CI score and/or the SI score.
- a multiplier may be applied to the summation of derived component scores (e.g. pSIS, CI score, and/or SI score) or to one or more of the derived components scores prior to summation. In these embodiments, the multiplier may serve to normalize the overall SOI score to a range of 0 to 100.
- a pSIS multiplier may be applied to a derived pSIS score
- a CI multiplier may be applied to a derived CI score
- an SI multiplier may be applied to a derived SI score.
- a pSIS multiplier of 0.65 may be applied to a derived pSIS score
- a CI multiplier of 0.20 may be applied to a derived CI score
- an SI multiplier of 0.25 may be applied to a derived SI score.
- an overall SOI score could be determined as: 0.65*determined pSIS+0.20*determined CI score+0.25*determined SI score.
- a predetermined replacement score may be substituted for the derived component score. For example, a pSIS replacement score of 160 may be substituted for a derived pSIS score that is greater than 160, a CI replacement score of 180 may be substituted for a derived CI score that is greater than 180, and/or an SI replacement score of ⁇ 20 may be substituted for a derived SI score that is less than ⁇ 20.
- an overall severity of illness replacement score of 100 may be substituted for an overall severity of illness derived score greater than 100.
- the fictional patient's overall SOI score may be 87.65 ( ⁇ 0.65*95+0.20*107+0.25*18).
- FIG. 5 a flow diagram is provided illustrating a method 500 for predicting an outcome for a patient admitted to an acute care healthcare facility using a pSIS as a variable in predictive equations, in accordance with various embodiments of the present invention.
- a pSIS may be utilized as a variable in a predictive equation to predict an outcome for the patient.
- a pSIS and/or an updated pSIS is determined in accordance with method 300 .
- a comorbidity index (CI) score for the patient is received.
- the CI score accounts for effects that comorbidities have on a patient's physiology.
- the CI score for a patient may be determined by summing weights assigned to one or more comorbidity variables identified in an electronic medical record associated with the patient. Additionally, in some embodiments, a multiplier may be applied to the summation of weights assigned to the one or more identified comorbidity variables (e.g. summation of weights*10).
- Table 3 An example of the one or more comorbidity variables and associated weights for each that are used to determine the CI score are shown in Table 3 above.
- a support index (SI) score for the patient is received and/or determined.
- SI support index
- the SI score accounts for effects that certain medications and/or medical procedures administered to a patient (e.g. within the initial twenty-four hours from admission) have on the patient's physiology.
- the SI score for a patient is determined by summing weights assigned to one or more support variables identified in an electronic medical record associated with the patient. Additionally, in some embodiments, a multiplier may be applied to the summation of weights assigned to the one or more identified support variables (e.g. summation of weights*10).
- Table 4 An example of the one or more support variables and associated weights for each that are used to determine the SI score are shown in Table 4 above.
- a predicted outcome for the patient may be determined using the derived pSIS and one or more of the CI score and/or the SI score as variables in an appropriate predictive equation.
- exemplary predictive outcomes include: mortality risk, duration of mechanical ventilation, location of stay (e.g. within a health care facility or a specific level of care), readmission risk, discharge destination, and the like.
- embodiments of the present invention provide computerized methods and systems for use in, e.g., a healthcare computing environment, for determining a pSIS for a patient admitted to an acute care facility.
- a healthcare computing environment for determining a pSIS for a patient admitted to an acute care facility.
- the present invention has been described in relation to particular embodiments, which are intended in all respects to be illustrative rather than restrictive. Alternative embodiments will become apparent to those of ordinary skill in the art to which the present invention pertains without departing from its scope.
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Abstract
Description
| TABLE 1 | |||||||
| 5 (<64 min−1) | Highest HR | 5 (95-102 min−1) | 9 (103-138 | 16 (>138 | |||
| 0 (64-94 min−1) | min−1) | min−1) | |||||
| 9 (<48 min−1) | Lowest HR | 2 (77-100 min−1) | 13 (>100 | ||||
| 0 (48-76 min−1) | min−1) | ||||||
| 3 (<57 min−1) | Median HR | 3 (72-80 min−1) | 5 (81-87 | 8 (88-111 | 11 (>111 | ||
| 0 (64-94 min−1) | min−1) | min−1) | min−1) | ||||
| 6 (<76.00 | Highest MAP | 1 (93.67-136.32 mmHg) | 9 (>136.32 | ||||
| mmHg) | 0 (76.00-93.66 mmHg) | mmHg) | |||||
| 18 (<53.00 | 10 (53.00-70.32 | 5 (70.33-82.66 | Lowest MAP | 5 (>103.99 mmHg) | |||
| mmHg) | mmHg) | mmHg) | 0 (82.67-103.99 mmHg | ||||
| 13 (<68.00 | 4 (68.00-81.66 | Median MAP | 10 (88.72-115.16 mmHg) | 7 (>115.16 | |||
| mmHg) | mmHg) | 0 (81.67-88.71 mmHg | mmHg) | ||||
| 15 (<36.11° C.) | 2 | Highest Temp. | 3 (37.07-38.44° C.) | 9 | |||
| (36.11-36.79° C.) | 0 (36.80-37.06° C.) | (>38.44° C.) | |||||
| 14 | Lowest Temp. | 2 (36.00-36.12° C.) | 4 | 5 | |||
| (<35.11° C.) | 0 (35.11-35.99° C.) | (36.13-36.99° C.) | (>36.99° C.) | ||||
| 6 (<36.44° C.) | Median Temp. | 2 (36.62-37.60° C.) | 7 | ||||
| 0 (36.44-36.61° C.) | (>37.60° C.) | ||||||
| 12 (<16 min−1) | Lowest Resp. | 16 (>19 min−1) | |||||
| 0 (16-19 min−1) | |||||||
| 13 (<17 min−1) | Highest Resp. | 1 (20-23 min−1) | 18 (>23 | ||||
| 0 (17-19 min−1) | min−1) | ||||||
| 2 (<14 min−1) | 1 (14-17 min−1) | Median Resp. | 3 (20-22 min−1) | 14 >22 | |||
| 0 (18-19 min−1) | min−1) | ||||||
| TABLE 2 | ||||
| 4 (<27.10%) | Highest Hematocrit | 5 (>41.39%) | ||
| 0 (27.10-41.39%) | ||||
| 6 (<25.50%) | Lowest Hematocrit | 5 (>41.39%) | ||
| 0 (25.50-40.89%) | ||||
| 6 (<125 × 109/L) | Highest Platelet | 4 (>321 × 109/L) | ||
| 0 (125-321 × 109/L) | ||||
| 10 (<119 × 109/L) | Lowest Platelet | 2 (>314 × 109/L) | ||
| 0 (119-314 × 109/L) | ||||
| 5 (<134 mEq/L) | Highest Sodium | 9 (>143 mEq/L) | ||
| 0 (134-143 mEq/L) | ||||
| 11 (<133 mEq/L) | Lowest Sodium | 6 (>142 mEq/L) | ||
| 0 (133-142 mEq/L) | ||||
| TABLE 3 | |||
| Comorbidity | Weight | ||
| Bleeding | 4.1 | ||
| Stroke | 3.5 | ||
| Heart Fail | 3.2 | ||
| CHIs | 2.9 | ||
| Neuromusc | 2.6 | ||
| Dementia | 2.9 | ||
| COPD | 2.3 | ||
| Stroke and Bleeding | additional | ||
| 5.3 | |||
| Stroke and COPD | additional | ||
| 2.0 | |||
| CHIs and Heart Fail | additional | ||
| 2.5 | |||
| TABLE 4 | |||
| Variable | Weight | ||
| Pacemaker | −3.1 | ||
| Intubated | 1.6 | ||
| Mechanical | 7.7 | ||
| Ventilation | |||
| BiPap | 3.2 | ||
| Dialysis | 1.3 | ||
| Anti-Arrhythmic | −1.2 | ||
| Meds | |||
| Inotrope | 2.0 | ||
| Vasopressor given | 4.0 | ||
| IV | |||
| Antibiotics given IV | 1.5 | ||
| Insulin given IV | 1.7 | ||
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| US10489661B1 (en) | 2016-03-08 | 2019-11-26 | Ocuvera LLC | Medical environment monitoring system |
| US10600204B1 (en) | 2016-12-28 | 2020-03-24 | Ocuvera | Medical environment bedsore detection and prevention system |
| US11908573B1 (en) | 2020-02-18 | 2024-02-20 | C/Hca, Inc. | Predictive resource management |
| US11462322B1 (en) | 2018-12-07 | 2022-10-04 | C/Hca, Inc. | Methods of determining a state of a dependent user |
| CN110867228B (en) * | 2019-11-15 | 2023-01-17 | 北京大学人民医院(北京大学第二临床医学院) | Intelligent information grabbing and evaluating method and system for wound severity of wound inpatient |
| CN112687367A (en) * | 2020-12-29 | 2021-04-20 | 中国人民解放军总医院 | Medical record grouping method, device and equipment based on dynamic disease condition and storage medium |
| CN113100716B (en) * | 2021-04-16 | 2023-06-13 | 东南大学附属中大医院 | Centralized patient monitoring method and device, electronic equipment and storage medium |
| WO2023122837A1 (en) * | 2021-12-28 | 2023-07-06 | Universidad Peruana De Ciencias Aplicadas | Electronic equipment for estimating the length of hospitalisation for patients diagnosed with respiratory disease |
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